Universal and Composite Hypothesis Testing via Mismatched Divergence
Jayakrishnan Unnikrishnan, Dayu Huang, Sean Meyn, Amit Surana and, Venugopal Veeravalli

TL;DR
This paper introduces a modified universal hypothesis test based on mismatched divergence, which generalizes Hoeffding's test and offers improved finite-sample performance, especially for large alphabet distributions.
Contribution
It proposes a mismatched divergence-based test that generalizes Hoeffding's test and demonstrates its asymptotic optimality and finite-sample advantages in composite hypothesis testing.
Findings
Mismatched test is asymptotically equivalent to Hoeffding's test for certain distributions.
The mismatched test is optimal within exponential family distributions.
It has better finite-sample performance due to lower variance growth.
Abstract
For the universal hypothesis testing problem, where the goal is to decide between the known null hypothesis distribution and some other unknown distribution, Hoeffding proposed a universal test in the nineteen sixties. Hoeffding's universal test statistic can be written in terms of Kullback-Leibler (K-L) divergence between the empirical distribution of the observations and the null hypothesis distribution. In this paper a modification of Hoeffding's test is considered based on a relaxation of the K-L divergence test statistic, referred to as the mismatched divergence. The resulting mismatched test is shown to be a generalized likelihood-ratio test (GLRT) for the case where the alternate distribution lies in a parametric family of the distributions characterized by a finite dimensional parameter, i.e., it is a solution to the corresponding composite hypothesis testing problem. For…
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